2022
DOI: 10.3390/rs14061395
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GNSS-IR Snow Depth Retrieval Based on the Fusion of Multi-Satellite SNR Data by the BP Neural Network

Abstract: Compared with previous snow depth monitoring methods, global navigation satellite system-interferometric reflectometry (GNSS-IR) technology has the advantage of obtaining continuous daily observation data, and has great application potential. However, since GNSS satellites are in motion, their position in the sky is constantly varying, and the Fresnel reflection areas about the receiver in different periods alter accordingly. As a result, the retrieving results obtained from different GNSS satellites, and data… Show more

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Cited by 6 publications
(1 citation statement)
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“…Machine learning can establish a complex mapping relationship between feature parameters and snow depth, better suppress the influence of non-linear factors, and improve the retrieval accuracy for low snow depths and snow depths closer to the antenna. Currently, machine learning has been applied to the retrieval of other surface environmental parameters [22,23]. With this motivation, this paper aims to propose a particle swarm optimized long short-term memory (PSO-LSTM) based triple feature snow depth retrieval algorithm and use the frequency, amplitude and phase extracted from the GPS L1 band SNR data as input to this algorithm for snow depth retrieval.…”
Section: Introductionmentioning
confidence: 99%
“…Machine learning can establish a complex mapping relationship between feature parameters and snow depth, better suppress the influence of non-linear factors, and improve the retrieval accuracy for low snow depths and snow depths closer to the antenna. Currently, machine learning has been applied to the retrieval of other surface environmental parameters [22,23]. With this motivation, this paper aims to propose a particle swarm optimized long short-term memory (PSO-LSTM) based triple feature snow depth retrieval algorithm and use the frequency, amplitude and phase extracted from the GPS L1 band SNR data as input to this algorithm for snow depth retrieval.…”
Section: Introductionmentioning
confidence: 99%